Profile Information
- Affiliation
- Associate professor, Department of Biomedical Data Science, School of Medicine, Fujita Health University
- Degree
- Ph.D(Mar, 2003, The University of Tokyo)
- Researcher number
- 40512140
- J-GLOBAL ID
- 201101036451836391
- researchmap Member ID
- B000004615
- External link
Reflected in our thoughts,
experience, by reforming our actions,
nurtures our well-being.
Motivated by an interest in the memorization mechanisms of the brain, I have conducted computer simulations to investigate whether current knowledge about molecular neuroscience provides a synaptic basis for learning and memory—that is, whether synaptic plasticity underlies the brain’s ability to learn and remember. My research goal is the derivation of mathematical models of synaptic plasticity. The rules of synaptic plasticity are not simple. Synaptic plasticity generally occurs in a synapse-specific manner, but in some case it occurs cooperatively among synapses. It is also significantly affected by age, emotional state, and psychiatric disorders. I focus on the first steps of how neural functions emerge from complex biochemical reactions at synapses. (more)
Research Interests
7Research Areas
4Research History
6Committee Memberships
1-
Aug, 2023 - Jun, 2025
Awards
1Papers
29-
Cell and Tissue Research, Oct 4, 2025 Peer-reviewedAbstract Familial neurohypophysial diabetes insipidus (FNDI) is an autosomal dominant disorder caused by mutations in the arginine vasopressin (AVP) gene. In AVP neurons in a mouse model of FNDI, aggregates of mutant AVP precursors accumulate within a specific compartment of the endoplasmic reticulum (ER). However, as FNDI mice aged, or were exposed to repeated water deprivation, the ER lumen dilated and mutant aggregates dispersed throughout the ER. Meanwhile, autophagic isolation membranes, known as phagophores, emerged to envelop ER containing these aggregates, indicating induction of ER-phagy. Previous in vitro studies showed that phagophores originate from ER membranes, but the structural relationship between phagophores and the ER membrane in vivo remains unknown. In this study, we used serial block-face scanning electron microscopy to investigate the structural relationship between phagophores, ER membranes, and protein aggregates within dilated ER of AVP neurons from FNDI mice subjected to intermittent water deprivation for 4 weeks. Three-dimensional analysis revealed that phagophores enveloped aggregates located within the dilated ER. Serial imaging further demonstrated a physical connection between these phagophores and intact ER membranes. This study provides the first in vivo evidence of the structural continuity between phagophores and the ER membrane in AVP neurons in a mouse model of FNDI.
-
Microscopy, 74(3) 223-232, Jun, 2025 Peer-reviewedInvitedLead authorLast authorCorresponding author
-
Cell Reports, 44(4) 115504, Apr 8, 2025 Peer-reviewedLast authorCorresponding authorAbstract Liquid–liquid phase separation (LLPS) of biological macromolecules leads to the formation of various membraneless organelles. LLPS can not only form homogenous condensates but also multilayered and multiphase condensates, which can mediate complex cellular functions. However, the factors that determine the topological features of multiphase condensates are not fully understood. Herein, we focused on Ca2+/calmodulin-dependent protein kinase II (CaMKII), a major postsynaptic protein that undergoes various forms of LLPS with other postsynaptic proteins, and present a minimalistic computational model that reproduces these forms of LLPS, including a form of two-phase condensates, phase-in-phase (PIP) organization. Analyses of this model revealed that the competitive binding of two types of client proteins is required for the PIP formation. The PIP only formed when CaMKII had high valency and a short linker length. Such CaMKII proteins exhibited a low surface tension, a modular structure, and slow diffusion. These properties are consistent with the functions required by CaMKII to store information at the synaptic level. Thus, the computational modeling reveals new structure–function relationships for CaMKII as a synaptic memory unit.
-
Scientific reports, 15(1) 4195-4195, Feb 4, 2025This study developed a three-dimensional ultrastructural analysis application using serial block-face scanning electron microscopy (SBF-SEM) to investigate surgically acquired human skin tissues containing the arrector pili muscle. We utilized the en bloc staining, including reduced osmium, thiocarbohydrazide, and lead aspartate, as well as the embedding using a carbon-based conductive resin. Next, we obtained serial images with SBF-SEM. The results revealed dense nerve fiber networks branching from nearby nerve fiber bundles outside the muscle and running among muscle fibers. Additionally, the dense nerve network running through and along arrector pili muscle fibers rarely penetrates the connective tissues between smooth muscle fibers and epithelial cells. Furthermore, in the observation area, no individual smooth muscle fibers formed adhesion structures with the epithelial cells of the hair follicle, ending in the dermal extracellular matrix near the epithelial cells. These results indicate the usefulness of this approach for three-dimensional ultrastructural analyses of human skin tissues comprising follicular units and revealing structural changes in skin tissues, especially the arrector pili muscle and nerve fibers with hair follicular epithelium, in aging and diseased conditions.
-
iScience, 26(12) 108338, Nov, 2023 Peer-reviewed
-
Annals of Botany, 132(6) 1159-1174, Jul 25, 2023 Peer-reviewedAbstract Background and Aims During the analysis of plant male meiocytes coming from destroyed meiocyte columns (united multicellular structures formed by male meiocytes in each anther locule), a considerable amount of information becomes unavailable. Therefore, in this study intact meiocyte columns were studied by volume microscopy in wild-type rye for the most relevant presentation of 3-D structure of rye meiocytes throughout meiosis. Methods We used two types of volume light microscopy: confocal laser scanning microscopy and non-confocal bright-field scanning microscopy combined with alcohol and aldehyde fixation, as well as serial block-face scanning electron microscopy. Key Results Unusual structures, called nuclear protuberances, were detected. At certain meiotic stages, nuclei formed protuberances that crossed the cell wall through intercellular channels and extended into the cytoplasm of neighbouring cells, while all other aspects of cell structure appeared to be normal. This phenomenon of intercellular nuclear migration (INM) was detected in most meiocytes at leptotene/zygotene. No cases of micronucleus formation or appearance of binucleated meiocytes were noticed. There were instances of direct contact between two nuclei during INM. No influence of fixation or of mechanical impact on the induction of INM was detected. Conclusions Intercellular nuclear migration in rye may be a programmed process (a normal part of rye male meiosis) or a tricky artefact that cannot be avoided in any way no matter which approach to meiocyte imaging is used. In both cases, INM seems to be an obligatory phenomenon that has previously been hidden by limitations of common microscopic techniques and by 2-D perception of plant male meiocytes. Intercellular nuclear migration cannot be ignored in any studies involving manipulations of rye anthers.
-
Tri-view Two-photon Microscopic Image Registration and Deblurring with Convolutional Neural NetworksNeural networks, 152 57-69, Aug, 2022 Peer-reviewed
-
PLOS Computational Biology, 17(9) e1009364-e1009364, Sep 30, 2021 Peer-reviewedLead authorCorresponding authorIn behavioral learning, reward-related events are encoded into phasic dopamine (DA) signals in the brain. In particular, unexpected reward omission leads to a phasic decrease in DA (DA dip) in the striatum, which triggers long-term potentiation (LTP) in DA D2 receptor (D2R)-expressing spiny-projection neurons (D2 SPNs). While this LTP is required for reward discrimination, it is unclear how such a short DA-dip signal (0.5–2 s) is transferred through intracellular signaling to the coincidence detector, adenylate cyclase (AC). In the present study, we built a computational model of D2 signaling to determine conditions for the DA-dip detection. The DA dip can be detected only if the basal DA signal sufficiently inhibits AC, and the DA-dip signal sufficiently disinhibits AC. We found that those two requirements were simultaneously satisfied only if two key molecules, D2R and regulators of G protein signaling (RGS) were balanced within a certain range; this balance has indeed been observed in experimental studies. We also found that high level of RGS was required for the detection of a 0.5-s short DA dip, and the analytical solutions for these requirements confirmed their universality. The imbalance between D2R and RGS is associated with schizophrenia and DYT1 dystonia, both of which are accompanied by abnormal striatal LTP. Our simulations suggest that D2 SPNs in patients with schizophrenia and DYT1 dystonia cannot detect short DA dips. We finally discussed that such psychiatric and movement disorders can be understood in terms of the imbalance between D2R and RGS.
-
eNeuro, Oct 27, 2020 Peer-reviewedPrecise information on synapse organization in a dendrite is crucial to understanding the mechanisms underlying voltage integration and the variability in the strength of synaptic inputs across dendrites of different complex morphologies. Here, we used focused ion beam/scanning electron microscope (FIB/SEM) to image the dendritic spines of mice in the hippocampal CA1 region, CA3 region, somatosensory cortex, striatum, and cerebellum (CB). Our results show that the spine geometry and dimensions differ across neuronal cell types. Despite this difference, dendritic spines were organized in an orchestrated manner such that the postsynaptic density (PSD) area per unit length of dendrite scaled positively with the dendritic diameter in CA1 proximal stratum radiatum (PSR), cortex and CB. The ratio of the PSD area to neck length was kept relatively uniform across dendrites of different diameters in CA1 PSR. Computer simulation suggests that a similar level of synaptic strength across different dendrites in CA1 PSR enables the effective transfer of synaptic inputs from the dendrites towards soma. Excitatory postsynaptic potentials (EPSPs), evoked at single spines by glutamate uncaging and recorded at the soma, show that the neck length is more influential than head width in regulating the EPSP magnitude at the soma. Our study describes thorough morphological features and the organizational principles of dendritic spines in different brain regions.Significance statement Little is known about the characteristic anatomical features underlying the organization of spine synapses in a dendrite. This study used volume electron microscopy to make an extensive characterization of dendritic spine synapses in multiple regions of the mouse brain to uncover the principles underlying their placement along a dendritic shaft. By using a combination of approaches such as two-photon imaging, glutamate uncaging, electrophysiology, and computer simulation, we reveal the functional importance of regulated spine placement along a dendritic trunk. Our research presents a crucial step in understanding the synaptic computational principle in dendrites by highlighting the generalizable features of dendritic spine organization in a neuron.
-
PLoS computational biology, 16(7) e1008078, Jul, 2020 Peer-reviewedLead authorCorresponding authorAnimals remember temporal links between their actions and subsequent rewards. We previously discovered a synaptic mechanism underlying such reward learning in D1 receptor (D1R)-expressing spiny projection neurons (D1 SPN) of the striatum. Dopamine (DA) bursts promote dendritic spine enlargement in a time window of only a few seconds after paired pre- and post-synaptic spiking (pre-post pairing), which is termed as reinforcement plasticity (RP). The previous study has also identified underlying signaling pathways; however, it still remains unclear how the signaling dynamics results in RP. In the present study, we first developed a computational model of signaling dynamics of D1 SPNs. The D1 RP model successfully reproduced experimentally observed protein kinase A (PKA) activity, including its critical time window. In this model, adenylate cyclase type 1 (AC1) in the spines/thin dendrites played a pivotal role as a coincidence detector against pre-post pairing and DA burst. In particular, pre-post pairing (Ca2+ signal) stimulated AC1 with a delay, and the Ca2+-stimulated AC1 was activated by the DA burst for the asymmetric time window. Moreover, the smallness of the spines/thin dendrites is crucial to the short time window for the PKA activity. We then developed a RP model for D2 SPNs, which also predicted the critical time window for RP that depended on the timing of pre-post pairing and phasic DA dip. AC1 worked for the coincidence detector in the D2 RP model as well. We further simulated the signaling pathway leading to Ca2+/calmodulin-dependent protein kinase II (CaMKII) activation and clarified the role of the downstream molecules of AC1 as the integrators that turn transient input signals into persistent spine enlargement. Finally, we discuss how such timing windows guide animals' reward learning.
-
Neural networks, 125 92-103, May, 2020 Peer-reviewed
-
Microscopy, 69(2) 79-91, Apr, 2020 Peer-reviewedInvitedImage processing is one of the most important applications of recent machine learning (ML) technologies. Convolutional neural networks (CNNs), a popular deep learning-based ML architecture, have been developed for image processing applications. However, the application of ML to microscopic images is limited as microscopic images are often 3D/4D, that is, the image sizes can be very large, and the images may suffer from serious noise generated due to optics. In this review, three types of feature reconstruction applications to microscopic images are discussed, which fully utilize the recent advancements in ML technologies. First, multi-frame super-resolution is introduced, based on the formulation of statistical generative model-based techniques such as Bayesian inference. Second, data-driven image restoration is introduced, based on supervised discriminative model-based ML technique. In this application, CNNs are demonstrated to exhibit preferable restoration performance. Third, image segmentation based on data-driven CNNs is introduced. Image segmentation has become immensely popular in object segmentation based on electron microscopy (EM); therefore, we focus on EM image processing.
-
Scientific reports, 9(1) 19413-19413, Dec 19, 2019 Peer-reviewedRecently, there has been rapid expansion in the field of micro-connectomics, which targets the three-dimensional (3D) reconstruction of neuronal networks from stacks of two-dimensional (2D) electron microscopy (EM) images. The spatial scale of the 3D reconstruction increases rapidly owing to deep convolutional neural networks (CNNs) that enable automated image segmentation. Several research teams have developed their own software pipelines for CNN-based segmentation. However, the complexity of such pipelines makes their use difficult even for computer experts and impossible for non-experts. In this study, we developed a new software program, called UNI-EM, for 2D and 3D CNN-based segmentation. UNI-EM is a software collection for CNN-based EM image segmentation, including ground truth generation, training, inference, postprocessing, proofreading, and visualization. UNI-EM incorporates a set of 2D CNNs, i.e., U-Net, ResNet, HighwayNet, and DenseNet. We further wrapped flood-filling networks (FFNs) as a representative 3D CNN-based neuron segmentation algorithm. The 2D- and 3D-CNNs are known to demonstrate state-of-the-art level segmentation performance. We then provided two example workflows: mitochondria segmentation using a 2D CNN and neuron segmentation using FFNs. By following these example workflows, users can benefit from CNN-based segmentation without possessing knowledge of Python programming or CNN frameworks.
-
Neuroscience Research, 146 22-35, Sep, 2019 Peer-reviewedSee also: https://youtu.be/GWVtrtwNovw
-
PLOS ONE, 9(12) e115464, Dec, 2014 Peer-reviewed
-
PLOS COMPUTATIONAL BIOLOGY, 10(11) e1003949, Nov, 2014 Peer-reviewed
-
SCIENCE, 345(6204) 1616-1620, Sep, 2014 Peer-reviewed
-
PLOS ONE, 9(6) e99040, Jun, 2014 Peer-reviewed
-
BIOPHYSICAL JOURNAL, 106(6) 1414-1420, Mar, 2014 Peer-reviewed
-
Neural Networks, 43 114-124, Jul, 2013 Peer-reviewedLead author
-
JOURNAL OF NEUROSCIENCE, 31(4) 1516-1527, Jan, 2011 Peer-reviewed
-
HFSP JOURNAL, 3(4) 240-254, Aug, 2009 Peer-reviewed
-
JOURNAL OF NEUROSCIENCE, 28(13) 3310-3323, Mar, 2008 Peer-reviewed
-
JOURNAL OF THE PHYSICAL SOCIETY OF JAPAN, 76(4) 044806, Apr, 2007 Peer-reviewed
-
Systems and Computers in Japan, 38(1) 41-50, Jan, 2007 Peer-reviewed
-
GENES TO CELLS, 11(9) 1071-1083, Sep, 2006 Peer-reviewed
-
JOURNAL OF COMPUTATIONAL NEUROSCIENCE, 16(3) 251-265, May, 2004 Peer-reviewed
-
ICONIP'02: PROCEEDINGS OF THE 9TH INTERNATIONAL CONFERENCE ON NEURAL INFORMATION PROCESSING, 25-29, 2002 Peer-reviewed
-
ICONIP'02: PROCEEDINGS OF THE 9TH INTERNATIONAL CONFERENCE ON NEURAL INFORMATION PROCESSING, 1490-1494, 2002 Peer-reviewed
Misc.
26-
Kaibogaku Zasshi / Acta anatomica Nipponica, 97(2) 41-44, Sep, 2022 InvitedLead author
-
Clinical neuroscience, 40(4) 534-536, Apr, 2022 InvitedLead authorCorresponding author
-
KENBIKYO, 55(3) 120-124, Dec, 2020 Peer-reviewedInvitedLead authorCorresponding author
-
The brain & neural networks, 22(3) 133-144, Sep, 2015 Invited
Teaching Experience
6-
Apr, 2024 - Present医学科3年 アセンブリIII (Fujita Health University)
-
Apr, 2024 - Present大学院講義 医科学概論 (Fujita Health University)
-
Apr, 2023 - Present医学科2年 医学統計学 (Fujita Health University)
-
Apr, 2023 - Present医学科1年 読書ゼミナール (Fujita Health University)
-
Apr, 2023 - Present医学科1年 基礎データサイエンス (Fujita Health University)
Research Projects
12-
Grants-in-Aid for Scientific Research, Japan Society for the Promotion of Science, Apr, 2024 - Mar, 2029
-
Grants-in-Aid for Scientific Research, Japan Society for the Promotion of Science, Apr, 2024 - Mar, 2029
-
Grant-in-aid from Fujita health university, Fujita Health University, Apr, 2025 - Mar, 2026
-
Strategic Basic Research Programs CREST "Spatiotemporal dynamics of intracellular components.", Dec, 2020 - Mar, 2026
-
Grant-in-Aid for Scientific Research (C)., Japan Society for the Promotion of Science., Apr, 2020 - Mar, 2024